Scopus; WoS

Smooth Balance Softmax for Long-Tailed Image Classification

Năm XB 2025 Tạp chí / Hội thảo Lecture Notes in Networks and Systems DOI / Link https://doi.org/10.1007/978-3-031-80943-9_36 ↗

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Tóm tắt

Data imbalance is one of the most important issues in the process of training deep learning networks. It directly affects the performance of the proposed models. Most recent methods have focused on improving the model’s performance by proposing new rebalance...

Tài liệu tham khảo

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